Impact of similarity metrics on single-cell RNA-seq data clustering

Author:

Kim Taiyun1,Chen Irene Rui1,Lin Yingxin1,Wang Andy Yi-Yang2,Yang Jean Yee Hwa1,Yang Pengyi1ORCID

Affiliation:

1. School of Mathematics and Statistics, The University of Sydney, Sydney, NSW 2006, Australia

2. Department of Anaesthesia, The University of Sydney Northern Clinical School, The University of Sydney, Sydney, NSW 2006, Australia

Abstract

Abstract Advances in high-throughput sequencing on single-cell gene expressions [single-cell RNA sequencing (scRNA-seq)] have enabled transcriptome profiling on individual cells from complex samples. A common goal in scRNA-seq data analysis is to discover and characterise cell types, typically through clustering methods. The quality of the clustering therefore plays a critical role in biological discovery. While numerous clustering algorithms have been proposed for scRNA-seq data, fundamentally they all rely on a similarity metric for categorising individual cells. Although several studies have compared the performance of various clustering algorithms for scRNA-seq data, currently there is no benchmark of different similarity metrics and their influence on scRNA-seq data clustering. Here, we compared a panel of similarity metrics on clustering a collection of annotated scRNA-seq datasets. Within each dataset, a stratified subsampling procedure was applied and an array of evaluation measures was employed to assess the similarity metrics. This produced a highly reliable and reproducible consensus on their performance assessment. Overall, we found that correlation-based metrics (e.g. Pearson’s correlation) outperformed distance-based metrics (e.g. Euclidean distance). To test if the use of correlation-based metrics can benefit the recently published clustering techniques for scRNA-seq data, we modified a state-of-the-art kernel-based clustering algorithm (SIMLR) using Pearson’s correlation as a similarity measure and found significant performance improvement over Euclidean distance on scRNA-seq data clustering. These findings demonstrate the importance of similarity metrics in clustering scRNA-seq data and highlight Pearson’s correlation as a favourable choice. Further comparison on different scRNA-seq library preparation protocols suggests that they may also affect clustering performance. Finally, the benchmarking framework is available at http://www.maths.usyd.edu.au/u/SMS/bioinformatics/software.html.

Funder

Australian Research Council Discovery Early Career Researcher Award

Australian Research Council Discovery Projects

National Health and Medical Research Council Career Development Fellowships

Judith and David Coffey Life Lab

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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